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基于深度学习的侧颅面测量长度自动标定系统。

Automated calibration system for length measurement of lateral cephalometry based on deep learning.

机构信息

State Key Laboratory of Oral Diseases, West China School of Stomatology, West China Hospital of Stomatology, Department of Orthodontics, Sichuan University, People's Republic of China.

Chengdu Boltzmann Intelligence Technology Co., Ltd, People's Republic of China.

出版信息

Phys Med Biol. 2022 Nov 18;67(22). doi: 10.1088/1361-6560/ac9880.

Abstract

. Cephalometric analysis has been significantly facilitated by artificial intelligence (AI) in recent years. For digital cephalograms, linear measurements are conducted based on the length calibration process, which has not been automatized in current AI-based systems. Therefore, this study aimed to develop an automated calibration system for lateral cephalometry to conduct linear measurements more efficiently.. This system was based on deep learning algorithms and medical priors of a stable structure, the anterior cranial base (Sella-Nasion). First, a two-stage cascade convolutional neural network was constructed based on 2860 cephalograms to locate sella, nasion, and 2 ruler points in regions of interest. Further, Sella-Nasion distance was applied to estimate the distance between ruler points, and then pixels size of cephalograms was attained for linear measurements. The accuracy of automated landmark localization, ruler length prediction, and linear measurement based on automated calibration was evaluated with statistical analysis.. First, for AI-located points, 99.6% ofand 86% ofpoints deviated less than 2 mm from the ground truth, and 99% of ruler points deviated less than 0.3 mm from the ground truth. Also, this system correctly predicted the ruler length of 98.95% of samples. Based on automated calibration, 11 linear cephalometric measurements of the test set showed no difference from manual calibration ( > 0.05).. This system was the first reported in the literature to conduct automated calibration with high accuracy and showed high potential for clinical application in cephalometric analysis.

摘要

近年来,人工智能(AI)极大地促进了头影测量分析。对于数字化头影测量,线性测量是基于长度校准过程进行的,但目前基于人工智能的系统尚未实现自动化。因此,本研究旨在开发一种用于侧位头影测量的自动校准系统,以更有效地进行线性测量。

该系统基于深度学习算法和稳定结构(前颅底(蝶鞍-鼻根))的医学先验知识。首先,基于 2860 个头影测量片构建了一个两阶段级联卷积神经网络,以定位感兴趣区域中的蝶鞍、鼻根和 2 个标尺点。然后,应用蝶鞍-鼻根距离来估计标尺点之间的距离,然后获取头影测量片的像素大小以进行线性测量。通过统计分析评估了自动地标定位、标尺长度预测和基于自动校准的线性测量的准确性。

首先,对于 AI 定位的点,99.6%和 86%的点与真实值的偏差小于 2mm,99%的标尺点与真实值的偏差小于 0.3mm。此外,该系统正确预测了 98.95%样本的标尺长度。基于自动校准,测试集的 11 项线性头影测量值与手动校准无差异(>0.05)。

该系统是文献中首次报道的高精度自动校准系统,在头影测量分析的临床应用中具有很大的潜力。

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